数学系Seminar第1664期 A new method for solving the homogeneous feasibility problem

创建时间:  2018/06/13  龚惠英   浏览次数:   返回

报告主题: A new method for solving the homogeneous feasibility problem

报告人:Kees Roos 教授 (荷兰 Delft University of Technology)

报告时间:2018年6月14日(周四)13:00

报告地点:校本部G507

邀请人:白延琴教授

主办部门:太阳成集团tyc33455数学系

报告摘要:Finding a nonnegative nonzero vector in the null space of a matrix is a fundamen-tal problem that arises in many applications. The same holds for its dual problem,which is the problem of finding a positive vector in the row space of a matrix. The first problem is called the Von Neumann problem, after John von Neumann, who proposed the first solution method in a private communication to George Dantzig in 1948; it has been published by Dantzig only in 1992. The second problem is the so-called Perceptron problem. The perceptron models a hypothetical nervous system, or machine, and is designed to illustrate some of the fundamental properties of intelligent systems. Nowadays both problems find much interest in Artificial Intelligence, especiallyin Big Data and Machine Learning. Usually the problems that arise are so large that the standard methods for solving linear optimization problems (like the Sim-plex Method and Interior-Point Methods) fail to work. Therefore the emphasis is currently on the use of cleverly designed first-order methods. In our presentation we fucus on a new method that combines the Mirror-Prox method of Nemirovski and a rescaling method introduced by Chubanov.

欢迎教师、员工参加 !

上一条:数学系Seminar第1665期 Quadratic convergence to the optimal solution of second order conic optimization

下一条:数学系Seminar第1663期 Edge Based Joint Multi-energy CT Image Reconstruction


数学系Seminar第1664期 A new method for solving the homogeneous feasibility problem

创建时间:  2018/06/13  龚惠英   浏览次数:   返回

报告主题: A new method for solving the homogeneous feasibility problem

报告人:Kees Roos 教授 (荷兰 Delft University of Technology)

报告时间:2018年6月14日(周四)13:00

报告地点:校本部G507

邀请人:白延琴教授

主办部门:太阳成集团tyc33455数学系

报告摘要:Finding a nonnegative nonzero vector in the null space of a matrix is a fundamen-tal problem that arises in many applications. The same holds for its dual problem,which is the problem of finding a positive vector in the row space of a matrix. The first problem is called the Von Neumann problem, after John von Neumann, who proposed the first solution method in a private communication to George Dantzig in 1948; it has been published by Dantzig only in 1992. The second problem is the so-called Perceptron problem. The perceptron models a hypothetical nervous system, or machine, and is designed to illustrate some of the fundamental properties of intelligent systems. Nowadays both problems find much interest in Artificial Intelligence, especiallyin Big Data and Machine Learning. Usually the problems that arise are so large that the standard methods for solving linear optimization problems (like the Sim-plex Method and Interior-Point Methods) fail to work. Therefore the emphasis is currently on the use of cleverly designed first-order methods. In our presentation we fucus on a new method that combines the Mirror-Prox method of Nemirovski and a rescaling method introduced by Chubanov.

欢迎教师、员工参加 !

上一条:数学系Seminar第1665期 Quadratic convergence to the optimal solution of second order conic optimization

下一条:数学系Seminar第1663期 Edge Based Joint Multi-energy CT Image Reconstruction